Free energy and dendritic self-organization

Research output: Contribution to journalResearch articleContributedpeer-review

Contributors

  • Stefan J. Kiebel - , Max Planck Institute for Human Cognitive and Brain Sciences (Author)
  • Karl J. Friston - , University College London (Author)

Abstract

In this paper, we pursue recent observations that, through selective dendritic filtering, single neurons respond to specific sequences of presynaptic inputs. We try to provide a principled and mechanistic account of this selectivity by applying a recent free-energy principle to a dendrite that is immersed in its neuropil or environment. We assume that neurons self-organize to minimize a variational free-energy bound on the self-information or surprise of presynaptic inputs that are sampled. We model this as a selective pruning of dendritic spines that are expressed on a dendritic branch. This pruning occurs when post-synaptic gain falls below a threshold. Crucially, postsynaptic gain is itself optimized with respect to free energy. Pruning suppresses free energy as the dendrite selects presynaptic signals that conform to its expectations, specified by a generative model implicit in its intracellular kinetics. Not only does this provide a principled account of how neurons organize and selectively sample the myriad of potential presynaptic inputs they are exposed to, but it also connects the optimization of elemental neuronal (dendritic) processing to generic (surprise or evidence-based) schemes in statistics and machine learning, such as Bayesian model selection and automatic relevance determination.

Details

Original languageEnglish
Article number80
JournalFrontiers in systems neuroscience
Volume5
Publication statusPublished - 11 Oct 2011
Peer-reviewedYes
Externally publishedYes

Keywords

Keywords

  • Bayesian inference, Dendrite, Dendritic computation, Free energy, Multi-scale, Non-linear dynamical system, Single neuron, Synaptic reconfiguration

Library keywords